Sentence Similarity
sentence-transformers
Safetensors
English
modernbert
feature-extraction
Generated from Trainer
dataset_size:6661966
loss:MultipleNegativesRankingLoss
loss:CachedMultipleNegativesRankingLoss
loss:SoftmaxLoss
loss:AnglELoss
loss:CoSENTLoss
loss:CosineSimilarityLoss
text-embeddings-inference
Update README.md
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README.md
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- loss:CachedMultipleNegativesRankingLoss
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- loss:SoftmaxLoss
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- loss:CosineSimilarityLoss
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base_model:
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widget:
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- source_sentence:
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Sandra went
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the garden.
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Mary
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football.
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to the
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to the
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football.
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sentences:
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- In the adulthood stage, it can jump, walk, run
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- The chocolate is bigger than the container.
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- The football before the bathroom was in the garden.
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- source_sentence:
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Speaker 1: I am very devastated these days.
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Speaker 2: That seems bad and I am sorry to hear that. What happened?
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Speaker 1: My father day 3 weeks ago.I still can'
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Speaker 2: I am truly sorry to hear that. Please accept my apologies for
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loss. May he rest in peace
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sentences:
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- 'The main emotion of this example dialogue is: content'
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- 'This text is about: genealogy'
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- My opinion is to wait until the child itself expresses a desire for this.
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- source_sentence: Francis I of France was a king.
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sentences:
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The
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Prototype
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datasets:
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- tomaarsen/natural-questions-hard-negatives
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- loss:CachedMultipleNegativesRankingLoss
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- loss:SoftmaxLoss
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- loss:CosineSimilarityLoss
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base_model:
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- tasksource/ModernBERT-base-nli
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- answerdotai/ModernBERT-base
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widget:
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- source_sentence: >-
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Daniel went to the kitchen. Sandra went back to the kitchen. Daniel moved to
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the garden. Sandra grabbed the apple. Sandra went back to the office. Sandra
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dropped the apple. Sandra went to the garden. Sandra went back to the
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bedroom. Sandra went back to the office. Mary went back to the office.
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Daniel moved to the bathroom. Sandra grabbed the apple. Sandra travelled to
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the garden. Sandra put down the apple there. Mary went back to the bathroom.
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Daniel travelled to the garden. Mary took the milk. Sandra grabbed the
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apple. Mary left the milk there. Sandra journeyed to the bedroom. John
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travelled to the office. John went back to the garden. Sandra journeyed to
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the garden. Mary grabbed the milk. Mary left the milk. Mary grabbed the
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milk. Mary went to the hallway. John moved to the hallway. Mary picked up
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the football. Sandra journeyed to the kitchen. Sandra left the apple. Mary
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discarded the milk. John journeyed to the garden. Mary dropped the football.
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Daniel moved to the bathroom. Daniel journeyed to the kitchen. Mary
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travelled to the bathroom. Daniel went to the bedroom. Mary went to the
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hallway. Sandra got the apple. Sandra went back to the hallway. Mary moved
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to the kitchen. Sandra dropped the apple there. Sandra grabbed the milk.
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Sandra journeyed to the bathroom. John went back to the kitchen. Sandra went
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to the kitchen. Sandra travelled to the bathroom. Daniel went to the garden.
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Daniel moved to the kitchen. Sandra dropped the milk. Sandra got the milk.
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Sandra put down the milk. John journeyed to the garden. Sandra went back to
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the hallway. Sandra picked up the apple. Sandra got the football. Sandra
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moved to the garden. Daniel moved to the bathroom. Daniel travelled to the
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garden. Sandra went back to the bathroom. Sandra discarded the football.
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sentences:
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- In the adulthood stage, it can jump, walk, run
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- The chocolate is bigger than the container.
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- The football before the bathroom was in the garden.
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- source_sentence: >-
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Context: I am devasted.
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Speaker 1: I am very devastated these days.
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Speaker 2: That seems bad and I am sorry to hear that. What happened?
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Speaker 1: My father day 3 weeks ago.I still can't believe.
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Speaker 2: I am truly sorry to hear that. Please accept my apologies for
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your loss. May he rest in peace
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sentences:
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- 'The main emotion of this example dialogue is: content'
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- 'This text is about: genealogy'
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- My opinion is to wait until the child itself expresses a desire for this.
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- source_sentence: Francis I of France was a king.
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sentences:
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- >-
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The Apple QuickTake -LRB- codenamed Venus , Mars , Neptune -RRB- is one of
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the first consumer digital camera lines .. digital camera. digital camera.
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It was launched in 1994 by Apple Computer and was marketed for three years
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before being discontinued in 1997 .. Apple Computer. Apple Computer. Three
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models of the product were built including the 100 and 150 , both built by
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Kodak ; and the 200 , built by Fujifilm .. Kodak. Kodak. Fujifilm. Fujifilm.
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The QuickTake cameras had a resolution of 640 x 480 pixels maximum -LRB- 0.3
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Mpx -RRB- .. resolution. Display resolution. The 200 model is only
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officially compatible with the Apple Macintosh for direct connections ,
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while the 100 and 150 model are compatible with both the Apple Macintosh and
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Microsoft Windows .. Apple Macintosh. Apple Macintosh. Microsoft Windows.
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Microsoft Windows. Because the QuickTake 200 is almost identical to the Fuji
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DS-7 or to Samsung 's Kenox SSC-350N , Fuji 's software for that camera can
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be used to gain Windows compatibility for the QuickTake 200 .. Some other
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software replacements also exist as well as using an external reader for the
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removable media of the QuickTake 200 .. Time Magazine profiled QuickTake as
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`` the first consumer digital camera '' and ranked it among its `` 100
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greatest and most influential gadgets from 1923 to the present '' list ..
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digital camera. digital camera. Time Magazine. Time Magazine. While the
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QuickTake was probably the first digicam to have wide success , technically
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this is not true as the greyscale Dycam Model 1 -LRB- also marketed as the
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Logitech FotoMan -RRB- was the first consumer digital camera to be sold in
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the US in November 1990 .. digital camera. digital camera. greyscale.
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greyscale. At least one other camera , the Fuji DS-X , was sold in Japan
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even earlier , in late 1989 .
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- >-
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The ganglion cell layer -LRB- ganglionic layer -RRB- is a layer of the
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retina that consists of retinal ganglion cells and displaced amacrine cells
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.. retina. retina. In the macula lutea , the layer forms several strata ..
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macula lutea. macula lutea. The cells are somewhat flask-shaped ; the
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rounded internal surface of each resting on the stratum opticum , and
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sending off an axon which is prolonged into it .. flask. Laboratory flask.
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stratum opticum. stratum opticum. axon. axon. From the opposite end numerous
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dendrites extend into the inner plexiform layer , where they branch and form
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flattened arborizations at different levels .. inner plexiform layer. inner
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plexiform layer. arborizations. arborizations. dendrites. dendrites. The
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ganglion cells vary much in size , and the dendrites of the smaller ones as
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a rule arborize in the inner plexiform layer as soon as they enter it ;
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while those of the larger cells ramify close to the inner nuclear layer ..
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inner plexiform layer. inner plexiform layer. dendrites. dendrites. inner
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nuclear layer. inner nuclear layer
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- >-
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Coyote was a brand of racing chassis designed and built for the use of A. J.
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Foyt 's race team in USAC Championship car racing including the Indianapolis
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500 .. A. J. Foyt. A. J. Foyt. USAC. United States Auto Club. Championship
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car. American Championship car racing. Indianapolis 500. Indianapolis 500.
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It was used from 1966 to 1983 with Foyt himself making 141 starts in the car
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, winning 25 times .. George Snider had the second most starts with 24 ..
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George Snider. George Snider. Jim McElreath has the only other win with a
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Coyote chassis .. Jim McElreath. Jim McElreath. Foyt drove a Coyote to
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victory in the Indy 500 in 1967 and 1977 .. With Foyt 's permission , fellow
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Indy 500 champion Eddie Cheever 's Cheever Racing began using the Coyote
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name for his new Daytona Prototype chassis , derived from the Fabcar chassis
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design that he had purchased the rights to in 2007 .. Eddie Cheever. Eddie
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Cheever. Cheever Racing. Cheever Racing. Daytona Prototype. Daytona
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Prototype
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datasets:
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- tomaarsen/natural-questions-hard-negatives
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